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Privacy in Statistical Databases

International Conference, PSD 2022, Paris, France, September 21–23, 2022, Proceedings

Specificaties
Paperback, blz. | Engels
Springer International Publishing | e druk, 2022
ISBN13: 9783031139444
Rubricering
Springer International Publishing e druk, 2022 9783031139444
Onderdeel van serie Lecture Notes in Computer Science
Verwachte levertijd ongeveer 9 werkdagen

Samenvatting

​This book constitutes the refereed proceedings of the International Conference on Privacy in Statistical Databases, PSD 2022, held in Paris, France, during September 21-23, 2022.
The 25 papers presented in this volume were carefully reviewed and selected from 45 submissions. They were organized in topical sections as follows: Privacy models; tabular data; disclosure risk assessment and record linkage; privacy-preserving protocols; unstructured and mobility data; synthetic data; machine learning and privacy; and case studies.

Specificaties

ISBN13:9783031139444
Taal:Engels
Bindwijze:paperback
Uitgever:Springer International Publishing

Inhoudsopgave

​Privacy models.-&nbsp;An optimization-based decomposition heuristic for the microaggregation problem.-&nbsp;Privacy Analysis with a Distributed Transition System and a data-wise metric.-&nbsp;Multivariate Mean Comparison under Differential Privacy.-&nbsp;Asking The Proper Question: Adjusting Queries To Statistical Procedures Under<div>Differential Privacy.-&nbsp;Towards integrally private clustering: overlapping clusters for high privacy guarantees.-&nbsp;Tabular data.-&nbsp;Perspectives for Tabular Data Protection – How About Synthetic Data?.-&nbsp;On Privacy of Multidimensional Data Against Aggregate Knowledge Attacks.-&nbsp;Synthetic Decimal Numbers as a Flexible Tool for Suppression of Post-published&nbsp;Tabular Data.-&nbsp;Disclosure risk assessment and record linkage.-&nbsp;The risk of disclosure when reporting commonly used univariate statistics.-&nbsp;Privacy-Preserving protocols.-&nbsp;Tit-for-Tat Disclosure of a Binding Sequence of User Analyses in Safe Data&nbsp;Access Centers.-&nbsp;Secure and non-interactive k-NN classifier using symmetric fully homomorphic&nbsp;encryption.-&nbsp;Unstructured and mobility data.-&nbsp;Automatic evaluation of disclosure risks of text anonymization methods.-&nbsp;Generation of Synthetic Trajectory Microdata from Language Models.-&nbsp;Synthetic data.-&nbsp;Synthetic Individual Income Tax Data: Methodology, Utility, and Privacy Implications.-&nbsp;On integrating the number of synthetic data sets m into the a priori synthesis&nbsp;approach .-&nbsp;Challenges in Measuring Utility for Fully Synthetic Data.-&nbsp;Comparing the Utility and Disclosure Risk of Synthetic Data with Samples of&nbsp;Microdata.-&nbsp;Utility and Disclosure Risk for Differentially Private Synthetic Categorical Data.-&nbsp;Machine learning and privacy.-&nbsp;Membership Inference Attack Against Principal Component Analysis.-&nbsp;When Machine Learning Models Leak: An Exploration of Synthetic Training&nbsp;Data.-&nbsp;Case studies.-&nbsp;A Note on the Misinterpretation of the US Census Re-identification Attack.-&nbsp;A Re-examination of the Census Bureau Reconstruction and Reidentification Attack.- Quality Assessment of the 2014 to 2019 National Survey on Drug Use and&nbsp;Health (NSDUH) Public Use Files.-&nbsp;Privacy in Practice: Latest Achievements of the EUSTAT SDC group.-&nbsp;How Adversarial Assumptions Influence Re- identification Risk Measures: A COVID-19 Case Study.</div>

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        Privacy in Statistical Databases